In this study, we examine if engineered topological features can distinguish time series sampled from different stochastic processes with different noise characteristics, in both balanced and unbalanced sampling schemes. We compare our classification results against the results of the same classification tasks built on statistical and raw features. We conclude that in classification tasks of time series, different machine learning models built on engineered topological features perform consistently better than those built on standard statistical and raw features.
翻译:在本研究中,我们研究工程地貌特征是否可以在均衡和不平衡的抽样办法中区分从具有不同噪声特征的不同随机过程抽取的时间序列。我们比较我们的分类结果与基于统计和原始特征的同一分类任务的结果。我们的结论是,在时间序列的分类任务中,基于工程地貌特征的不同机器学习模型比基于标准统计和原始特征的模型的计算效果一致好。